NetworkX

Source code for networkx.classes.function

"""Functional interface to graph methods and assorted utilities.
"""
#    Copyright (C) 2004-2012 by
#    Aric Hagberg <hagberg@lanl.gov>
#    Dan Schult <dschult@colgate.edu>
#    Pieter Swart <swart@lanl.gov>
#    All rights reserved.
#    BSD license.
#
import networkx as nx
import itertools
__author__ = """\n""".join(['Aric Hagberg (hagberg@lanl.gov)',
                           'Pieter Swart (swart@lanl.gov)',
                           'Dan Schult(dschult@colgate.edu)'])
__all__ = ['nodes', 'edges', 'degree', 'degree_histogram', 'neighbors',
           'number_of_nodes', 'number_of_edges', 'density',
           'nodes_iter', 'edges_iter', 'is_directed','info',
           'freeze','is_frozen','subgraph','create_empty_copy',
           'set_node_attributes','get_node_attributes',
           'set_edge_attributes','get_edge_attributes',
           'all_neighbors','non_neighbors']

[docs]def nodes(G): """Return a copy of the graph nodes in a list.""" return G.nodes()
[docs]def nodes_iter(G): """Return an iterator over the graph nodes.""" return G.nodes_iter()
[docs]def edges(G,nbunch=None): """Return list of edges adjacent to nodes in nbunch. Return all edges if nbunch is unspecified or nbunch=None. For digraphs, edges=out_edges """ return G.edges(nbunch)
[docs]def edges_iter(G,nbunch=None): """Return iterator over edges adjacent to nodes in nbunch. Return all edges if nbunch is unspecified or nbunch=None. For digraphs, edges=out_edges """ return G.edges_iter(nbunch)
[docs]def degree(G,nbunch=None,weight=None): """Return degree of single node or of nbunch of nodes. If nbunch is ommitted, then return degrees of *all* nodes. """ return G.degree(nbunch,weight)
def neighbors(G,n): """Return a list of nodes connected to node n. """ return G.neighbors(n)
[docs]def number_of_nodes(G): """Return the number of nodes in the graph.""" return G.number_of_nodes()
[docs]def number_of_edges(G): """Return the number of edges in the graph. """ return G.number_of_edges()
[docs]def density(G): r"""Return the density of a graph. The density for undirected graphs is .. math:: d = \frac{2m}{n(n-1)}, and for directed graphs is .. math:: d = \frac{m}{n(n-1)}, where `n` is the number of nodes and `m` is the number of edges in `G`. Notes ----- The density is 0 for a graph without edges and 1 for a complete graph. The density of multigraphs can be higher than 1. Self loops are counted in the total number of edges so graphs with self loops can have density higher than 1. """ n=number_of_nodes(G) m=number_of_edges(G) if m==0 or n <= 1: d=0.0 else: if G.is_directed(): d=m/float(n*(n-1)) else: d= m*2.0/float(n*(n-1)) return d
[docs]def degree_histogram(G): """Return a list of the frequency of each degree value. Parameters ---------- G : Networkx graph A graph Returns ------- hist : list A list of frequencies of degrees. The degree values are the index in the list. Notes ----- Note: the bins are width one, hence len(list) can be large (Order(number_of_edges)) """ degseq=list(G.degree().values()) dmax=max(degseq)+1 freq= [ 0 for d in range(dmax) ] for d in degseq: freq[d] += 1 return freq
[docs]def is_directed(G): """ Return True if graph is directed.""" return G.is_directed()
[docs]def freeze(G): """Modify graph to prevent further change by adding or removing nodes or edges. Node and edge data can still be modified. Parameters ----------- G : graph A NetworkX graph Examples -------- >>> G=nx.Graph() >>> G.add_path([0,1,2,3]) >>> G=nx.freeze(G) >>> try: ... G.add_edge(4,5) ... except nx.NetworkXError as e: ... print(str(e)) Frozen graph can't be modified Notes ----- To "unfreeze" a graph you must make a copy by creating a new graph object: >>> graph = nx.path_graph(4) >>> frozen_graph = nx.freeze(graph) >>> unfrozen_graph = nx.Graph(frozen_graph) >>> nx.is_frozen(unfrozen_graph) False See Also -------- is_frozen """ def frozen(*args): raise nx.NetworkXError("Frozen graph can't be modified") G.add_node=frozen G.add_nodes_from=frozen G.remove_node=frozen G.remove_nodes_from=frozen G.add_edge=frozen G.add_edges_from=frozen G.remove_edge=frozen G.remove_edges_from=frozen G.clear=frozen G.frozen=True return G
[docs]def is_frozen(G): """Return True if graph is frozen. Parameters ----------- G : graph A NetworkX graph See Also -------- freeze """ try: return G.frozen except AttributeError: return False
def subgraph(G, nbunch): """Return the subgraph induced on nodes in nbunch. Parameters ---------- G : graph A NetworkX graph nbunch : list, iterable A container of nodes that will be iterated through once (thus it should be an iterator or be iterable). Each element of the container should be a valid node type: any hashable type except None. If nbunch is None, return all edges data in the graph. Nodes in nbunch that are not in the graph will be (quietly) ignored. Notes ----- subgraph(G) calls G.subgraph() """ return G.subgraph(nbunch)
[docs]def create_empty_copy(G,with_nodes=True): """Return a copy of the graph G with all of the edges removed. Parameters ---------- G : graph A NetworkX graph with_nodes : bool (default=True) Include nodes. Notes ----- Graph, node, and edge data is not propagated to the new graph. """ H=G.__class__() if with_nodes: H.add_nodes_from(G) return H
[docs]def info(G, n=None): """Print short summary of information for the graph G or the node n. Parameters ---------- G : Networkx graph A graph n : node (any hashable) A node in the graph G """ info='' # append this all to a string if n is None: info+="Name: %s\n"%G.name type_name = [type(G).__name__] info+="Type: %s\n"%",".join(type_name) info+="Number of nodes: %d\n"%G.number_of_nodes() info+="Number of edges: %d\n"%G.number_of_edges() nnodes=G.number_of_nodes() if len(G) > 0: if G.is_directed(): info+="Average in degree: %8.4f\n"%\ (sum(G.in_degree().values())/float(nnodes)) info+="Average out degree: %8.4f"%\ (sum(G.out_degree().values())/float(nnodes)) else: s=sum(G.degree().values()) info+="Average degree: %8.4f"%\ (float(s)/float(nnodes)) else: if n not in G: raise nx.NetworkXError("node %s not in graph"%(n,)) info+="Node % s has the following properties:\n"%n info+="Degree: %d\n"%G.degree(n) info+="Neighbors: " info+=' '.join(str(nbr) for nbr in G.neighbors(n)) return info
[docs]def set_node_attributes(G,name,attributes): """Set node attributes from dictionary of nodes and values Parameters ---------- G : NetworkX Graph name : string Attribute name attributes: dict Dictionary of attributes keyed by node. Examples -------- >>> G=nx.path_graph(3) >>> bb=nx.betweenness_centrality(G) >>> nx.set_node_attributes(G,'betweenness',bb) >>> G.node[1]['betweenness'] 1.0 """ for node,value in attributes.items(): G.node[node][name]=value
[docs]def get_node_attributes(G,name): """Get node attributes from graph Parameters ---------- G : NetworkX Graph name : string Attribute name Returns ------- Dictionary of attributes keyed by node. Examples -------- >>> G=nx.Graph() >>> G.add_nodes_from([1,2,3],color='red') >>> color=nx.get_node_attributes(G,'color') >>> color[1] 'red' """ return dict( (n,d[name]) for n,d in G.node.items() if name in d)
[docs]def set_edge_attributes(G,name,attributes): """Set edge attributes from dictionary of edge tuples and values Parameters ---------- G : NetworkX Graph name : string Attribute name attributes: dict Dictionary of attributes keyed by edge (tuple). Examples -------- >>> G=nx.path_graph(3) >>> bb=nx.edge_betweenness_centrality(G, normalized=False) >>> nx.set_edge_attributes(G,'betweenness',bb) >>> G[1][2]['betweenness'] 2.0 """ for (u,v),value in attributes.items(): G[u][v][name]=value
[docs]def get_edge_attributes(G,name): """Get edge attributes from graph Parameters ---------- G : NetworkX Graph name : string Attribute name Returns ------- Dictionary of attributes keyed by node. Examples -------- >>> G=nx.Graph() >>> G.add_path([1,2,3],color='red') >>> color=nx.get_edge_attributes(G,'color') >>> color[(1,2)] 'red' """ return dict( ((u,v),d[name]) for u,v,d in G.edges(data=True) if name in d)
[docs]def all_neighbors(graph, node): """ Returns all of the neighbors of a node in the graph. If the graph is directed returns predecessors as well as successors. Parameters ---------- graph : NetworkX graph Graph to find neighbors. node : node The node whose neighbors will be returned. Returns ------- neighbors : iterator Iterator of neighbors """ if graph.is_directed(): values = itertools.chain.from_iterable([graph.predecessors_iter(node), graph.successors_iter(node)]) else: values = graph.neighbors_iter(node) return values
[docs]def non_neighbors(graph, node): """Returns the non-neighbors of the node in the graph. Parameters ---------- graph : NetworkX graph Graph to find neighbors. node : node The node whose neighbors will be returned. Returns ------- non_neighbors : iterator Iterator of nodes in the graph that are not neighbors of the node. """ nbors = set(neighbors(graph, node)) | set([node]) return (nnode for nnode in graph if nnode not in nbors)